Mike Frampton, "Mastering Apache Spark: Gain expertise in processing and storing data by using advanced techniques with Apache Spark"
English | ISBN: 1783987146 | 2015 | 318 pages | AZW3 | 10 MB
English | ISBN: 1783987146 | 2015 | 318 pages | AZW3 | 10 MB
Gain expertise in processing and storing data by using advanced techniques with Apache Spark
About This Book
Explore the integration of Apache Spark with third party applications such as H20, Databricks and Titan
Evaluate how Cassandra and Hbase can be used for storage
An advanced guide with a combination of instructions and practical examples to extend the most up-to date Spark functionalities
Who This Book Is For
If you are a developer with some experience with Spark and want to strengthen your knowledge of how to get around in the world of Spark, then this book is ideal for you. Basic knowledge of Linux, Hadoop and Spark is assumed. Reasonable knowledge of Scala is expected.
What You Will Learn
Extend the tools available for processing and storage
Examine clustering and classification using MLlib
Discover Spark stream processing via Flume, HDFS
Create a schema in Spark SQL, and learn how a Spark schema can be populated with data
Study Spark based graph processing using Spark GraphX
Combine Spark with H20 and deep learning and learn why it is useful
Evaluate how graph storage works with Apache Spark, Titan, HBase and Cassandra
Use Apache Spark in the cloud with Databricks and AWS
In Detail
Apache Spark is an in-memory cluster based parallel processing system that provides a wide range of functionality like graph processing, machine learning, stream processing and SQL. It operates at unprecedented speeds, is easy to use and offers a rich set of data transformations.
This book aims to take your limited knowledge of Spark to the next level by teaching you how to expand Spark functionality. The book commences with an overview of the Spark eco-system. You will learn how to use MLlib to create a fully working neural net for handwriting recognition. You will then discover how stream processing can be tuned for optimal performance and to ensure parallel processing. The book extends to show how to incorporate H20 for machine learning, Titan for graph based storage, Databricks for cloud-based Spark. Intermediate Scala based code examples are provided for Apache Spark module processing in a CentOS Linux and Databricks cloud environment.
Style and approach
This book is an extensive guide to Apache Spark modules and tools and shows how Spark's functionality can be extended for real-time processing and storage with worked examples.